Mukherjee Odity, Sanapala Krishna Rao, Anbazhagana Padmanabhan, Ghosh Saurabh
National Center for Biological Sciences, Bangalore, India.
BMC Proc. 2009 Dec 15;3 Suppl 7(Suppl 7):S82. doi: 10.1186/1753-6561-3-s7-s82.
Rheumatoid arthritis (RA) is a complex, chronic inflammatory disease implicated to have several plausible candidate loci; however, these may not account for all the genetic variations underlying RA. Common disorders are hypothesized to be highly complex with interaction among genes and other risk factors playing a major role in the disease process. This complexity is further magnified because such interactions may be with or without a strong independent effect and are thus difficult to detect using traditional statistical methodologies. The main challenge to analyze such gene x gene and gene x environment interaction is attributed to a phenomenon referred to as the "curse of dimensionality." Several combinatorial methodologies have been proposed to tackle this analytical challenge. Because quantitative traits underlie complex phenotypes and contain more information on the trait variation within genotypes than qualitative dichotomy, analyzing quantitative traits correlated with the affection status is a more powerful tool for mapping such trait genes. Recently, a generalized multifactor dimensionality reduction method was proposed that allows for adjustment for discrete and quantitative traits and can be used to analyze qualitative and quantitative phenotypes in a population based study design.In this report, we evaluate the efficiency of the generalized multifactor dimensionality reduction statistical suite to decipher small interacting factors that contribute to RA disease pathogenesis.
类风湿性关节炎(RA)是一种复杂的慢性炎症性疾病,涉及多个可能的候选基因座;然而,这些基因座可能无法解释RA潜在的所有遗传变异。常见疾病被认为高度复杂,基因与其他风险因素之间的相互作用在疾病过程中起主要作用。这种复杂性进一步加剧,因为此类相互作用可能有或没有强大的独立效应,因此使用传统统计方法难以检测。分析此类基因×基因和基因×环境相互作用的主要挑战归因于一种被称为“维度诅咒”的现象。已经提出了几种组合方法来应对这一分析挑战。由于数量性状是复杂表型的基础,并且比定性二分法包含更多关于基因型内性状变异的信息,因此分析与患病状态相关的数量性状是定位此类性状基因的更有力工具。最近,提出了一种广义多因素降维方法,该方法允许对离散和数量性状进行调整,可用于基于人群的研究设计中分析定性和定量表型。在本报告中,我们评估广义多因素降维统计套件在解读促成RA疾病发病机制的小相互作用因素方面的效率。